The methods and systems of the present invention is an algorithm which estimates motion inside objects that change during the scan. The algorithm is flexible and can be used for solving the misalignment correction problem and, more generally, for finding scan parameters that are not accurately known. The algorithm is based on Local Tomography so it is faster and is not limited to a source trajectory for which accurate and efficient inversion formulas exist.
Legal claims defining the scope of protection, as filed with the USPTO.
1. A motion estimation method for tomography comprising the steps of: (a) collecting tomographic data of an object which undergoes a transformation during a scan; (b) reconstructing an image of the original object, wherein information about the object useful for the motion estimation and contained in the image pertains only to one or more edges of the object, whereas the edges are defined as sharp spatial features inside the object; (c) using the reconstructed image from step (b) for estimating a transformation of the object during the scan; and (d) repeating steps (b) and (c) two or more times for improving the estimate of the transformation, wherein steps (b) and (c) are repeated until a number of edges with a predetermined characteristic are below a preselected threshold.
2. The method of claim 1 , wherein step (b) of reconstructing the image of the object comprises the step of: using x-rays only passing through a small neighborhood corresponding to each pixel for applying filtering and backprojection to data from the x-rays passing through the neighborhood, wherein a small neighborhood is defined as a region which is smaller than the smallest cross-section of the object.
3. The method of claim 1 , wherein using step (c) includes the step of: analyzing a spatial distribution of the one or more edges in the reconstructed image as a substep.
4. A motion estimation method for tomography comprising the steps of: (a) collecting tomographic data of an object which undergoes a transformation during a scan; (b) reconstructing an image of the original object, wherein information about the object useful for the motion estimation and contained in the image pertains only to one or more edges of the object, whereas the edges are defined as sharp spatial features inside the object; (c) using the reconstructed image from step (b) for estimating a transformation of the object during the scan, which includes the step of: analyzing a spatial distribution of the one or more edges in the reconstructed image as a substep, wherein the step of analyzing the spatial distribution of the edges in the reconstructed image includes the step of: using a prevalence of double edges in the reconstructed image for the motion estimation, wherein double edges are defined as edges located close to each other; and (d) repeating steps (b) and (c) two or more times for improving the estimate of the transformation, wherein steps (b) and (c) are repeated until a number of edges with a predetermined characteristic are below a preselected threshold.
5. The method of claim 4 , wherein step (b) includes the step of: assuming a selected model of the transformation that the object is undergoing and using the selected model for the reconstruction.
6. The method of claim 5 , further comprising the step of: making the conclusion that the assumed model is not an accurate model of the said transformation when a large number of double edges are detected; and making the conclusion that the assumed model is an accurate model of the said transformation when a small number of double edges are detected.
7. The method of claim 5 , wherein step (b) of reconstructing an image of the object includes the step of: using only x-rays passing through a small neighborhood corresponding to each pixel, wherein a small neighborhood is defined as a region which is smaller than the smallest cross-section of the object.
Cooperative Patent Classification codes for this invention. Click any code to explore related patents in that topic.
June 3, 2011
December 17, 2013
Browse 5M+ US patents with plain-English claim translations and AI-generated analysis.